Xuzhou Institute of Agricultural Sciences in Jiangsu Xuhuai District, Xuzhou, 221131, Jiangsu, China.
Jiangsu Key Laboratory of Crop Genetics and Physiology / Jiangsu Co-Innovation Center for Modern Production Technology of Grain Crops / Joint International Research Laboratory of Agriculture and Agri-Product Safety of the Ministry of Education of China, Yangzhou University, Yangzhou, 225009, Jiangsu, China.
Sci Rep. 2022 Jul 7;12(1):11549. doi: 10.1038/s41598-022-15414-0.
Accurately obtaining the spatial distribution information of fruit tree planting is of great significance to the development of fruit tree growth monitoring, disease and pest control, and yield estimation. In this study, the Sentenel-2 multispectral remote sensing imageries of different months during the growth period of the fruit trees were used as the data source, and single month vegetation indices, accumulated monthly vegetation indices (∑VIs), and difference vegetation indices between adjacent months (∆VIs) were constructed as input variables. Four conventional vegetation indices of NDVI, PSRI, GNDVI, and RVI and four improved vegetation indices of NDVIre1, NDVIre2, NDVIre3, and NDVIre4 based on the red-edge band were selected to construct a decision tree classification model combined with machine learning technology. Through the analysis of vegetation indices under different treatments and different months, combined with the attribute of Feature_importances_, the vegetation indices of different periods with high contribution were selected as input features, and the Max_depth values of the decision tree model were determined by the hyperparameter learning curve. The results have shown that when the Max_depth value of the decision tree model of the vegetation indices under the three treatments was 6, 8, and 8, the model classification was the best. The accuracy of the three vegetation index processing models on the training set were 0.8936, 0.9153, and 0.8887, and the accuracy on the test set were 0.8355, 0.7611, and 0.7940, respectively. This method could be applied to remote sensing classification of fruit trees in a large area, and could provide effective technical means for monitoring fruit tree planting areas with medium and high resolution remote sensing imageries.
准确获取果树种植的空间分布信息,对开展果树生长监测、病虫害防治和产量预估具有重要意义。本研究以果树生长期间不同月份的 Sentinel-2 多光谱遥感影像作为数据源,构建单月植被指数、累计月植被指数(∑VIs)和相邻月差值植被指数(∆VIs)作为输入变量。选择 4 种传统植被指数(NDVI、PSRI、GNDVI 和 RVI)和 4 种基于红边波段的改进植被指数(NDVIre1、NDVIre2、NDVIre3 和 NDVIre4),结合机器学习技术构建决策树分类模型。通过分析不同处理和不同月份下的植被指数,结合 Feature_importances 属性,选择高贡献度的不同时期植被指数作为输入特征,并通过超参数学习曲线确定决策树模型的 Max_depth 值。结果表明,当 3 种处理下的植被指数决策树模型的 Max_depth 值分别为 6、8 和 8 时,模型分类效果最佳。3 种植被指数处理模型在训练集上的分类精度分别为 0.8936、0.9153 和 0.8887,在测试集上的分类精度分别为 0.8355、0.7611 和 0.7940。该方法可应用于大面积的果树遥感分类,为利用中高分辨率遥感影像监测果树种植区提供了有效的技术手段。